We consider a hypothesis problem with directional alternatives. We approach the problem from a Bayesian decision theoretic point of view and consider a situation when one side of the alternatives is more important or more probable than the other. We develop a general Bayesian framework by specifying a mixture prior structure and a loss function related to the Kullback–Leibler divergence. This Bayesian decision method is applied to Normal and Poisson populations. Simulations are performed to compare the performance of the proposed method with that of a method based on a classical z-test and a Bayesian method based on the “0–1” loss
The article focuses on the discussion of basic approaches to hypotheses testing, which are Fisher, J...
In many practical cases of multiple hypothesis problems, it can be expected that the alternatives ar...
For high-dimensional hypothesis problems, new approaches have emerged since the publication. The mos...
We consider hypothesis testing problems with skewed alternatives via a Bayesian decision theoretic f...
Many hypothesis problems in practice require the selection of the left side or the right side altern...
The paper discusses the generalization of constrained Bayesian method (CBM) for arbitrary loss funct...
A multiple hypothesis problem with directional alternatives is considered in a decision theoretic fr...
In this article we investigate and develop the practical model assessment and selection methods for ...
This paper is concerned with the construction of prior probability measures for parametric families ...
We consider a multiple hypotheses problem with directional alternatives in a decision theoretic fram...
In recent years, Bayesian inference has become very popular in applied statistics. This study will p...
Model comparison and hypothesis testing is an integral part of all data analyses. In this thesis, I ...
The problem is how to compare the quality of different hypothesis tests in a Bayesian framework with...
Rules of decision-making about the variance of a Gaussian distribution are obtained and compared. Co...
We consider several statistical approaches to binary classification and multiple hypothesis testing ...
The article focuses on the discussion of basic approaches to hypotheses testing, which are Fisher, J...
In many practical cases of multiple hypothesis problems, it can be expected that the alternatives ar...
For high-dimensional hypothesis problems, new approaches have emerged since the publication. The mos...
We consider hypothesis testing problems with skewed alternatives via a Bayesian decision theoretic f...
Many hypothesis problems in practice require the selection of the left side or the right side altern...
The paper discusses the generalization of constrained Bayesian method (CBM) for arbitrary loss funct...
A multiple hypothesis problem with directional alternatives is considered in a decision theoretic fr...
In this article we investigate and develop the practical model assessment and selection methods for ...
This paper is concerned with the construction of prior probability measures for parametric families ...
We consider a multiple hypotheses problem with directional alternatives in a decision theoretic fram...
In recent years, Bayesian inference has become very popular in applied statistics. This study will p...
Model comparison and hypothesis testing is an integral part of all data analyses. In this thesis, I ...
The problem is how to compare the quality of different hypothesis tests in a Bayesian framework with...
Rules of decision-making about the variance of a Gaussian distribution are obtained and compared. Co...
We consider several statistical approaches to binary classification and multiple hypothesis testing ...
The article focuses on the discussion of basic approaches to hypotheses testing, which are Fisher, J...
In many practical cases of multiple hypothesis problems, it can be expected that the alternatives ar...
For high-dimensional hypothesis problems, new approaches have emerged since the publication. The mos...